Kumar Rahul, Marla Kiran, Sporn Kyle, Paladugu Phani, Khanna Akshay, Gowda Chirag, Ngo Alex, Waisberg Ethan, Jagadeesan Ram, Tavakkoli Alireza
Department of Biochemistry and Molecular Biology, University of Miami Miller School of Medicine, Miami, FL 33136, USA.
Carver College of Medicine, University of Iowa, Iowa City, IA 52242, USA.
Diagnostics (Basel). 2025 Jun 27;15(13):1648. doi: 10.3390/diagnostics15131648.
Musculoskeletal (MSK) disorders remain a major global cause of disability, with diagnostic complexity arising from their heterogeneous presentation and multifactorial pathophysiology. Recent advances across imaging modalities, molecular biomarkers, artificial intelligence applications, and point-of-care technologies are fundamentally reshaping musculoskeletal diagnostics. This review offers a novel synthesis by unifying recent innovations across multiple diagnostic imaging modalities, such as CT, MRI, and ultrasound, with emerging biochemical, genetic, and digital technologies. While existing reviews typically focus on advances within a single modality or for specific MSK conditions, this paper integrates a broad spectrum of developments to highlight how use of multimodal diagnostic strategies in combination can improve disease detection, stratification, and clinical decision-making in real-world settings. Technological developments in imaging, including photon-counting detector computed tomography, quantitative magnetic resonance imaging, and four-dimensional computed tomography, have enhanced the ability to visualize structural and dynamic musculoskeletal abnormalities with greater precision. Molecular imaging and biochemical markers such as CTX-II (C-terminal cross-linked telopeptides of type II collagen) and PINP (procollagen type I N-propeptide) provide early, objective indicators of tissue degeneration and bone turnover, while genetic and epigenetic profiling can elucidate individual patterns of susceptibility. Point-of-care ultrasound and portable diagnostic devices have expanded real-time imaging and functional assessment capabilities across diverse clinical settings. Artificial intelligence and machine learning algorithms now automate image interpretation, predict clinical outcomes, and enhance clinical decision support, complementing conventional clinical evaluations. Wearable sensors and mobile health technologies extend continuous monitoring beyond traditional healthcare environments, generating real-world data critical for dynamic disease management. However, standardization of diagnostic protocols, rigorous validation of novel methodologies, and thoughtful integration of multimodal data remain essential for translating technological advances into improved patient outcomes. Despite these advances, several key limitations constrain widespread clinical adoption. Imaging modalities lack standardized acquisition protocols and reference values, making cross-site comparison and clinical interpretation difficult. AI-driven diagnostic tools often suffer from limited external validation and transparency ("black-box" models), impacting clinicians' trust and hindering regulatory approval. Molecular markers like CTX-II and PINP, though promising, show variability due to diurnal fluctuations and comorbid conditions, complicating their use in routine monitoring. Integration of multimodal data, especially across imaging, omics, and wearable devices, remains technically and logistically complex, requiring robust data infrastructure and informatics expertise not yet widely available in MSK clinical practice. Furthermore, reimbursement models have not caught up with many of these innovations, limiting access in resource-constrained healthcare settings. As these fields converge, musculoskeletal diagnostics methods are poised to evolve into a more precise, personalized, and patient-centered discipline, driving meaningful improvements in musculoskeletal health worldwide.
肌肉骨骼(MSK)疾病仍然是全球残疾的主要原因,其诊断复杂性源于其异质性表现和多因素病理生理学。成像模式、分子生物标志物、人工智能应用和即时护理技术等方面的最新进展正在从根本上重塑肌肉骨骼诊断。本综述通过将多种诊断成像模式(如CT、MRI和超声)的最新创新与新兴的生化、遗传和数字技术相结合,提供了一种新颖的综合。虽然现有的综述通常侧重于单一模式或特定MSK疾病的进展,但本文整合了广泛的发展,以突出如何联合使用多模式诊断策略可以改善现实世界环境中的疾病检测、分层和临床决策。成像技术的发展,包括光子计数探测器计算机断层扫描、定量磁共振成像和四维计算机断层扫描,提高了更精确地可视化结构和动态肌肉骨骼异常的能力。分子成像和生化标志物,如CTX-II(II型胶原的C末端交联端肽)和PINP(I型前胶原N端前肽),提供了组织退化和骨转换的早期客观指标,而基因和表观遗传分析可以阐明个体易感性模式。即时护理超声和便携式诊断设备在不同临床环境中扩展了实时成像和功能评估能力。人工智能和机器学习算法现在可以自动进行图像解释、预测临床结果并增强临床决策支持,补充传统的临床评估。可穿戴传感器和移动健康技术将连续监测扩展到传统医疗环境之外,生成对动态疾病管理至关重要的真实世界数据。然而,诊断方案的标准化、新方法的严格验证以及多模式数据的合理整合对于将技术进步转化为改善患者预后仍然至关重要。尽管有这些进展,但仍有几个关键限制阻碍了其在临床中的广泛应用。成像模式缺乏标准化的采集协议和参考值,使得跨站点比较和临床解释变得困难。人工智能驱动的诊断工具往往缺乏外部验证且透明度有限(“黑箱”模型),影响临床医生的信任并阻碍监管批准。像CTX-II和PINP这样的分子标志物虽然很有前景,但由于昼夜波动和合并症而表现出变异性,使其在常规监测中的使用变得复杂。多模式数据的整合,尤其是跨成像、组学和可穿戴设备的数据整合,在技术和后勤方面仍然很复杂,需要强大的数据基础设施和信息学专业知识,而这些在MSK临床实践中尚未广泛可用。此外,报销模式尚未跟上许多这些创新的步伐,限制了资源有限的医疗环境中的获取。随着这些领域的融合,肌肉骨骼诊断方法有望发展成为一个更精确、个性化和以患者为中心的学科,推动全球肌肉骨骼健康的有意义改善。